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Article

A Methodology to Estimate Single-Event Effects Induced by Low-Energy Protons

1
Institut d’Electronique et des Systèmes (IES), UMR-CNRS 5214, University of Montpellier, 34095 Montpellier, France
2
European Organization for Nuclear Research (CERN), CH-1211 Geneva, Switzerland
*
Author to whom correspondence should be addressed.
Eng 2024, 5(1), 319-332; https://doi.org/10.3390/eng5010017
Submission received: 15 December 2023 / Revised: 16 February 2024 / Accepted: 17 February 2024 / Published: 19 February 2024
(This article belongs to the Section Electrical and Electronic Engineering)

Abstract

:
This work explains that the Coulomb elastic process on the nucleus is a major source of single-event effects (SEE) for protons within the energy range of 1–10 MeV. The infinite range of Coulomb interactions implies an exceptionally high recoil probability. This research seeks to extend the investigations under which the elastic process becomes significant in the energy deposition process by providing a simplified methodology to evaluate the elastic contribution impact on the reliability of electronics. The goal is to derive a method to provide a simple way to calculate and predict the SEE cross-section. At very low energy, we observe a significant increase in the proton differential cross-section. The use of a direct Monte Carlo approach would mainly trigger low energy recoiling ions, and a very long calculation time would be necessary to observe the tail of the spectrum. In this sense, this work provides a simple methodology to calculate the SEE cross-section. The single-event upset (SEU) cross-section results demonstrate a good agreement with the experimental data in terms of shape and order of magnitude for different technological nodes.

1. Introduction

The downscaling of electronic devices has significantly increased the sensitivity to low-energy particles such as neutrons and protons [1,2,3,4,5]. These particles belong to the family of hadrons and can provoke single event effects (SEE) by generating secondary ions that ionize the silicon in the device. These secondary ions arise from nuclear reactions initiated by the strong force interactions (hadronic process) [6]. There are similarities between neutrons and protons, which generally lead us to consider that electronic devices have the same sensitivity to both types of particles, at least above a few tens of MeV [7]. However, protons can also generate recoil ions through Coulomb interactions [8,9].
Considering SEE, memory devices are one of the most sensitive components, being prone to single-event upsets (SEU). In this sense, the sensitivity of memory devices to radiation effects, particularly regarding proton irradiation, has been extensively studied over the years [10,11,12,13]. This analysis reveals two main mechanisms driving single-event upset (SEU) sensitivity: direct ionization for low-energy protons (1 MeV) [12,13] and nonelastic nuclear reactions for high-energy protons (>10 MeV) [14,15]. Recent research has highlighted the significant contribution of the Coulomb elastic process between the 1 and 10 MeV energy range [8,11]. The probability of elastic recoil occurring is exceptionally high due to the infinite range of the Coulomb interactions.
In [8], a detailed analysis was performed, providing equations to calculate the SEE cross-section related to the silicon recoils through elastic scattering. However, this approach becomes complex if the user does not have in-depth knowledge of physics, electronics, and particle-matter interaction. In [11], more integrated devices and configurations were evaluated to investigate the mechanisms induced by proton irradiation. However, this work used Monte Carlo simulations to model the proton interaction, which is not the ideal approach. Due to the divergence at low recoil energy (as will be discussed in the Section 3), a direct MC approach would trigger mainly low-energy recoil ions, and a very long calculation time would be required to observe the tail of the spectrum.
This work, carried out in the framework of the RADNEXT project [16], details the mechanisms of the elastic process and extends the analysis by providing an engineering tool to evaluate the electronics sensitivity to protons at low energy. The goal is to derive a method to provide a simple way to calculate and predict the SEE cross-section.
The paper is structured as follows: In Section 2, we present the background related to the nucleon interaction process and the main interaction processes below 10 MeV. In Section 3, we explain the methodology, modeling, and simulation of the proton cross-section, establishing the linear energy transfer (LET) distribution of ions reaching the sensitive region. In Section 4, SEU cross-section results are presented and compared with experimental data. Finally, in Section 5, we present the conclusions of the work.

2. Particle-Matter Interaction Background

To propose a method that calculates the SEE cross-section, we first need to better understand the processes that occur during the particle-matter interaction. When a proton or neutron interacts with a nucleus of an atom, three different processes can occur:
  • Capture process—the incident proton or neutron is captured by the target nucleus, leading to the subsequent emission of gamma radiation to de-excite the resulting nucleus. Both particles require sufficient energy to initiate capture, and quantum mechanical effects further influence the probability, often resulting in relatively low capture probabilities. Additionally, the nuclear shell structure, which dictates the availability of energy states within the nucleus, can impact the probability of capture. Competing interactions, resonance effects, and isotope-specific properties contribute to this phenomenon. The low cross-section for neutron and proton capture results from intricate interplays between charge considerations, energy thresholds, quantum mechanics, nuclear structure, and isotope-specific behavior, demanding specific conditions and energies for these capture events to occur [17]. In this sense, we will not discuss this process in this work.
  • Elastic process—the incident proton or neutron undergoes scattering by the target nucleus, resulting in the recoil of the target nucleus due to energy and momentum transfer. Figure 1 illustrates the elastic mechanism. The elastic scattering process involves the interaction of a nucleon with a target nucleus without any change in the system’s internal energy, i.e., the conservation of total kinetic energy [18]. When a nucleon approaches a nucleus, it experiences a potential energy field due to the positive charge of the nucleus. If the nucleon has sufficient energy to overcome this potential barrier, it gets closer to the nucleus. During this interaction, the nucleon also exchanges energy and momentum with the nucleus, resulting in a change in direction for both particles. During this recoil, the ion generated can potentially trigger SEE [19,20].
  • Nonelastic process—the incident proton or neutron can excite or fragment the target nucleus. Unlike the elastic process, there is no conservation of kinetic energy. This process often leads to the generation of secondary particles, including ions that can trigger failures in electronic devices [18]. Figure 2 illustrates the nonelastic mechanism. In this process, the target nucleus may absorb the nucleon, forming a new compound nucleus or initiating nuclear reactions. Alternatively, the nucleon may induce inelastic scattering, exciting the nucleus to a higher energy state before being emitted [18,20].
However, unlike neutrons, protons are charged particles and can also interact directly with matter by the Coulomb force [8,11,18]. In this sense, there are two kinds of Coulomb interactions to consider:
  • Coulomb interaction with the electrons—This interaction corresponds to the direct ionization of the primary proton when it interacts with the electrons of the medium. The process involves the transfer of energy from the proton to the electrons, leading to the ionization of the medium and potentially causing SEE in electronic devices [20,21].
  • Coulomb interaction with the nuclei—In this elastic process, protons interact with the nuclei of the medium through the Coulomb force, resulting in the recoil of the impinged nucleus. This recoil can induce secondary ionization and contribute to the overall SEE rate in electronic devices. The total elastic process during proton–nucleus interaction is therefore attributed to the sum of two different processes: the strong force interaction and the Coulomb interaction [22].

Main Process below 10 MeV

Proton interaction processes are very similar to neutron ones. To understand the differences between neutrons and protons, identifying the contribution of each process, we need to investigate the products of the reactions generated during the interaction of both particles with matter. For each kind of reaction that can occur, there is a different threshold energy that corresponds to the minimum energy required to generate the secondary products. Table 1 illustrates the possible reactions for neutrons and protons below 10 MeV.
Based on Table 1, below 10 MeV, neutrons have four possible nonelastic reactions, while protons only have one. This is due to the charge of protons, which makes it more challenging to enter the nucleus and generate secondary ions. Looking at the only product generated by the proton, the aluminum production, it is insignificant for SEE contribution. This is shown in Figure 3, in which we plotted the reaction cross-section from the International Atomic Energy Agency (IAEA) database [23].
Finally, for protons below 10 MeV, the main process at play is the elastic reaction [8], which can be due to the strong force (hadronic process) and, at the same time, to the Coulomb force.

3. SEE Cross-Section Calculation Method

As discussed in the previous section, we know that the elastic reaction is essential for evaluating low-energy proton interactions. The next step is to develop a methodology to calculate the proton SEE cross-section σ p E p . One way to evaluate it is using the heavy-ions cross-section experimental results σ H I L E T as a basis [24]. To determine σ p E p , we can write:
σ p E p = 0 L E T m a x d P ( E t h ) d L E T σ H I L E T d L E T
In Equation (1), the d P d L E T is the LET distribution of the recoiling ions and secondary products that are produced during nucleon transport in matter. The quantity L E T m a x is the maximum ion LET generated by the proton interaction with a given energy ( E p ) . To calculate the LET distribution, we first need to obtain the cumulative probability P ( E t h ) of a proton crossing a target material with a thickness (Δx), the number of atoms per unit volume (N), and the nuclear cross-section ( σ p r o d ) . This probability is given by Equation (2) [18]:
P = 1 e N σ p r o d Δ x
where N for silicon is 5 × 1022 atoms/cm3.
To continue with the development of the method, we must further investigate the nuclear elastic cross-section. At this point, it is important to highlight the difference between the SEE cross-section, which measures the device’s sensitive area, and the nuclear cross-section, which expresses the probability of a particle to produce a nuclear reaction.

3.1. Nuclear Elastic Cross-Section Analysis

To investigate the nuclear elastic cross-section σ p r o d below 10 MeV, we simulated the interaction of neutrons and protons with a silicon nucleus using the DHORIN code [25]. DHORIN uses a spherical optical model and computes angular differential cross-section by using the ECIS code [26]. Then, by using basic equations of relativistic kinematics, DHORIN calculates the differential cross-section as a function of kinetic energy of the silicon recoil. Figure 4 and Figure 5 present the resulting calculations for protons at 5 MeV and 10 MeV, respectively. For comparison, we represented the results together for neutrons in the same energy.
Above 100 keV, neutrons and protons give two shapes that are very close as well as the order of magnitude of the differential cross-section. However, below 100 keV, we observe a very significant increase in the proton cross-section. This important difference is due to the Coulomb collision, which only exists for protons. At very low energies, the differential cross-section for protons is a million times greater than that of neutrons.
As the objective of this work is to estimate the proton SEE cross-section, it is crucial to determine a threshold energy (Eth) beyond which the recoil ion can trigger a fault in the device. If we compare proton and silicon ions, the threshold energy is expected to be similar for both. For technologies that are sensitive to the direct ionization of protons, we can consider, in a first approximation, that the Eth is around the proton energy near the Bragg peak (Eth = 50 keV), which corresponds to the maximum of the linear energy transfer (LET). In this sense, the recoil ion can trigger a fault if the energy is higher than the Eth. Figure 6 plots the elastic cross-section results for different values of threshold energy and as a function of the incident proton energy. Table 2 presents typical values of Eth for different technologies.
This analysis shows that low-energy proton interactions play a crucial role in the energy deposition in silicon, not just through direct ionization but also because of elastic reactions. However, this first approach does not account for the fact that recoils are not always produced in the sensitive volume (the Si substrate layer of the device) and can release some energy before reaching it, e.g., in the back-end of line (BEOL). As a result, we must consider that the differential cross-section is not the same at any point of the track.

3.2. Typical Ion Recoiling Ranges

To better understand the impact of the track, Table 3 summarizes the typical ranges of proton and silicon ions in silicon. The first line gives the values of the incident proton energy that we have considered. The second line gives the ranges of protons in silicon using the SRIM code [27]. The third line gives the maximum kinetic energy that a silicon recoil can have, which is calculated based on the differential cross-section results obtained with DHORIN. The last two lines were obtained using SRIM. Our methodology calculates the differential cross-section, which allows us to establish the relationship between the energy and nucleon diffusion angle. Since 180° is the highest angle that can be achieved, we can determine the maximum energy and calculate the maximum LET and range associated with this recoil.
The main conclusion is that the recoiling ions must be generated in a small layer of BEOL before reaching the sensitive region. As an example, at 10 MeV, the recoiling silicon may have an energy up to 1.3 MeV and thus must be generated no further than 3.5 μm from the sensitive region to be able to reach the sensitive area. As the range of a proton is comparable to the BEOL thickness at low energy (a few MeV), it means that it is necessary to consider the energy loss of the primary proton before the elastic collision responsible for a recoiling Si that will provoke an SEE.

3.3. Energy Loss Modeling

To model the loss of energy, we simulate a structure composed of two layers of silicon. The first one represents the BEOL, and the second one represents the sensitive region located in the bulk. This is a first approximation, as the real BEOL is composed not only of silicon but of several different materials. However, the real composition of the BEOL is generally confidential, and here, we use a simplified structure. The thickness of the sensitive region is generally assumed to be of the order of magnitude of 1–2 μm, consistent with the diffusion process of the charges during the ionization. If a silicon ion recoils inside the sensitive region, we can estimate its initial LET by calculating the recoiling energy of the reaction. However, if the recoil is generated outside the sensitive region, we need to take into account that the recoiling ion will lose energy before it reaches the sensitive region. This means that the effective LET value will be different from the initial one. Figure 7 illustrates the way a recoiling silicon can be generated at a distance x of the sensitive region.
The aim of our modeling is to determine the LET distribution of secondary ions that reach the sensitive region. Even if a Monte Carlo approach seems to be appropriate for this kind of calculation, it is not the optimal approach. Indeed, because of the divergence at low recoil energy (shown in Figure 4 and Figure 5), a direct Monte Carlo approach would mainly trigger low-energy recoiling ions, and a very long calculation time would be necessary to observe the tail of the spectrum. To prevent this, we adopt an analytical approach in which we consider that, to reach the sensitive region with a LET greater than a given value, it can be produced in many positions in the structure. By using the SRIM code, it is then possible to calculate the nuclear cross-section for producing this kind of ion at any position and, thus, the probability to create it in a small layer. To run this analysis, we need to define the three input parameters, which are the incident proton energy (Ep), the BEOL layer thickness (tBEOL), and the sensitive region thickness (tSR).
Based on this methodology, we extract the range functions of protons in silicon and silicon in silicon. Let Rp(Ep) be the range function of the proton and RSi(ESi) the range function of the Si ion. These functions depend on the particle energy and can be easily determined with the SRIM code [28]. We also need the reciprocal functions Rp−1 and RSi−1 that give the energy of a particle, knowing its range. The proton energy can thus be determined anywhere along the d-axis:
E p x = R p 1 R p E p t B E O L t B E O L x
Now, for an ion produced at the position (x) with an energy ESi(x) to reach the sensitive region with an energy greater than the energy threshold (Eth), we need to have:
E S i x ; L E T t h = R S i 1 R S i E t h ( L E T t h ) + x
The Eth is calculated for different LETth values based on the maximum LET of the recoil in Si. The next step is to calculate the cross-section (σprod) to produce an ion at the position x with high enough energy to reach the sensitive region. We obtained it by integrating the recoiling distribution at Ep(x) between ESi (x; LETth1) and ESi (x; LETth2). The probability that such an ion is created in the Δx layer is given by the Equation (2), as was presented at the beginning of this section.
By integrating over all the values of x, we can determine the initial probability. Finally, for short thickness, most protons would cross the silicon layer and reach the sensitive region with an energy given by Equation (3). This then needs to be added to the initial probability to obtain the cumulative probability. Then we must determine the LET of these primary protons appearing in the LET distribution as the direct ionization peak.

3.4. Cumulative Probability Calculation

Using our approach, we are then able to determine the cumulative probability of ions reaching the sensitive region. This quantity gives the probability that an ion reaches the sensitive region with an LET greater than a given value. Figure 8 plots these distributions for incident protons with energies ranging from 1 to 10 MeV. For a LET greater than 2 MeV·cm2/mg, we observe that the probability to trigger an SEE increases with proton energy. Nevertheless, below 2 MeV·cm2/mg, the lowest energies become the main contributors to the cumulative probability. At a very low LET, below 0.2 MeV·cm2/mg, the direct ionization peak is the main contributor, and the probability is 3–4 orders of magnitude higher.
This is a very important result since it is generally assumed that when the sensitivity increases (i.e., the threshold LET decreases), the probability to have a recoil decreases, and one must only consider the direct ionization peak. Here, we can clearly see that the decrease in incident energy is associated with an increase in the probability of low-LET recoiling particles. Using this result, we can finally apply Equation (1) and calculate the SEE cross-section.

4. Results and Discussion

To validate our method, we took the single-event upset (SEU) experimental results for the 90 nm, 65 nm, and 40 nm SRAMs [28,29] as a reference. We fit the σHI(LET) with a power law, which can be an alternative of the Weibull shape [30]. Figure 9, Figure 10 and Figure 11 plot this power law in comparison with experimental σHI(LET) results. We developed a tool to calculate the SEE cross-section with the methodology presented in the previous section and using Equation (1). These results are plotted in Figure 12, Figure 13 and Figure 14 together with the experimental SEU cross-section.
For 90 nm, the input parameters are a BEOL thickness of 10 μm, a sensitive region thickness of 2 μm, and a heavy-ion LETth of 0.5 MeV·cm2/mg. At 65 nm, we are using a BEOL thickness of 15 μm, a sensitive region of 2 μm, and a heavy-ion LETth of 0.3 MeV·cm2/mg. For 40 nm, the BEOL is 6 μm, the sensitive region thickness is 1 μm, and the heavy-ion LETth is 0.5 MeV·cm2/mg. The BEOL thickness was approximated considering the energy loss of the proton in the Si, thus making it possible to estimate the energy value of occurrence of the direct ionization peak.
The obtained results consistently align with the experimental data, though not achieving perfect agreement. Nevertheless, our evaluation of the SEU cross-section stands as robust. Our simulation requires only four input parameters, and despite the necessary simplifications in our calculations, including approximations in dimensions for each technology node and composition of the device structure, our results demonstrate a remarkable degree of consistency when compared to the experimental data. Notable, we observe a direct ionization peak around 1 MeV as well as a significant cross-section between 1 and 10 MeV.
Again, below 10 MeV, we have a major contribution of elastic scattering. The results could be improved if we would have had more data about the technology, in particular:
  • More information about the BEOL thickness;
  • More details about the BEOL composition;
  • More experimental data points for heavy ions, especially between 0.2 and 0.8 MeV·cm2/mg.
When dealing with the calculation of the SEE cross-section, there are a few crucial points to consider:
  • To calculate the differential cross-section, we used the DHORIN code, but other tools may be available; however, it is mandatory to consider the Coulomb scattering.
  • It is very important to account for the loss of energy of the primary proton, as it will determine the secondary ion energy distribution.
  • We must account for the distance that the secondaries will travel before reaching the sensitive region.
  • The calculation of the SEE cross-section for protons should not be calculated with a simple-step function, as it may lead to a major discrepancy.

5. Conclusions

In modern technologies, the susceptibility for SEE can be very high at a low incident proton energy (below 10 MeV). The main contribution at around 1 MeV is attributed to the direct ionization peak. However, between 1 and 10 MeV, there is also a significant cross-section which should be considered. This cross-section is associated with elastic collisions between incident protons and the nuclei of the matter. The main contribution to this is the Coulomb interaction, which does not occur for neutrons.
We have used a specific optical model to calculate the differential cross-section of the interaction of protons with a silicon nucleus. Results showed that, because the cross-section exhibits a divergence, this will have a significant impact on the LET distribution of ions that reach the sensitive region. Additionally, through a simplified modeling approach using only four input parameters (BEOL layer thickness, sensitive region thickness, technology LETth, and HI cross-section data), we were able to compute the SEE cross-section for incident protons. The calculated results demonstrate a good agreement with the experimental data in terms of shape and order of magnitude for different technological nodes. The divergences in concern to the experimental data are related to the simplifications in our calculations, including approximations in the dimensions of each technological node and the composition of the device structure. This agreement provides insights into the underlying mechanisms involved in SEE triggering.
For accurate calculations of the SEE cross-section for protons, we showed that it is important to consider the Coulomb scattering, which can result in significant recoil events. This is especially critical at low energies when the BEOL thickness cannot be negligible in comparison to the range of primary protons. The energy loss of primary protons is a key factor, as it determines the distribution of secondary ion energies. In addition, it is crucial to avoid using a simple-step function to calculate the SEE cross-section; in this work, we suggest a power or a Weibull law based on experimental data from heavy-ion analysis. It should be noted that the results may vary depending on the amount of heavy-ion data available.

Author Contributions

Conceptualization, C.M. and F.W.; methodology, C.M. and F.W.; validation, C.M., F.W., Y.A. and A.M.; formal analysis, C.M. and F.W.; investigation, C.M., F.W. and Y.A.; resources, Y.A., R.G.A. and F.S.; writing—original draft preparation, C.M.; writing—review and editing, F.W., Y.A., A.M., R.G.A., F.S. and J.B.; visualization, C.M., F.W., Y.A., A.M., R.G.A., F.S. and J.B.; project administration, R.G.A. and F.S.; funding acquisition, R.G.A. and F.S. All authors have read and agreed to the published version of the manuscript.

Funding

This project has received funding from the European Union’s Horizon 2020 research and innovation program under grant agreement No 101008126.

Institutional Review Board Statement

Not applicable.

Informed Consent Statement

Informed consent was obtained from all subjects involved in the study.

Data Availability Statement

Data are contained within the article.

Conflicts of Interest

The authors declare no conflict of interest.

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  29. Coronetti, A.; Cecchetto, M.; Wang, J.; Tali, M.; Martinez, P.F.; Kastriotou, M.; Papadopoulou, A.; Bilko, K.; Castellani, F.; Sacristan, M.; et al. SEU characterization of commercial and custom-designed SRAMs based on 90 nm technology and below. In Proceedings of the 2020 IEEE Radiation Effects Data Workshop (in conjunction with 2020 NSREC), Santa Fe, NM, USA, 29 November–30 December 2020; pp. 1–8. [Google Scholar] [CrossRef]
  30. Wrobel, F.; Touboul, A.D.; Pouget, V.; Dilillo, L.; Lorfèvre, E.; Saigné, F. The Power Law Shape of Heavy Ions Experimental Cross Section. IEEE Trans. Nucl. Sci. 2017, 64, 427–433. [Google Scholar] [CrossRef]
Figure 1. Elastic reaction leading to the deflection of the incident nucleon and the recoil of the target nucleus [18]. The recoil ion may be responsible for an SEE.
Figure 1. Elastic reaction leading to the deflection of the incident nucleon and the recoil of the target nucleus [18]. The recoil ion may be responsible for an SEE.
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Figure 2. Nonelastic reaction leading to the production of secondary particles [18]. The secondaries may ionize the matter and trigger SEE.
Figure 2. Nonelastic reaction leading to the production of secondary particles [18]. The secondaries may ionize the matter and trigger SEE.
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Figure 3. Nuclear cross-sections for p + 28Si interaction. Data from IAEA database [23].
Figure 3. Nuclear cross-sections for p + 28Si interaction. Data from IAEA database [23].
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Figure 4. Differential cross-section for incident neutrons and protons at 5 MeV and as a function of recoiling energy.
Figure 4. Differential cross-section for incident neutrons and protons at 5 MeV and as a function of recoiling energy.
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Figure 5. Differential cross-section for incident neutrons and protons at 10 MeV and as a function of recoiling energy.
Figure 5. Differential cross-section for incident neutrons and protons at 10 MeV and as a function of recoiling energy.
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Figure 6. Elastic cross-section as a function of proton energy for different threshold recoil energies.
Figure 6. Elastic cross-section as a function of proton energy for different threshold recoil energies.
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Figure 7. Illustration of an elastic collision in the BEOL. The recoiling silicon loses energy along its track and can reach the sensitive region with different LET.
Figure 7. Illustration of an elastic collision in the BEOL. The recoiling silicon loses energy along its track and can reach the sensitive region with different LET.
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Figure 8. Cumulative probability to obtain a silicon recoil with a LET > LETth for different proton energies. In this example, the BEOL thickness is 10 μm. The sensitive region layer is 1 μm.
Figure 8. Cumulative probability to obtain a silicon recoil with a LET > LETth for different proton energies. In this example, the BEOL thickness is 10 μm. The sensitive region layer is 1 μm.
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Figure 9. Heavy-ion cross-section for 90 nm SRAM fitted with a power law. Experimental data taken from [29].
Figure 9. Heavy-ion cross-section for 90 nm SRAM fitted with a power law. Experimental data taken from [29].
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Figure 10. Heavy-ion cross-section for 65 nm SRAM fitted with a power law. Experimental data taken from [28].
Figure 10. Heavy-ion cross-section for 65 nm SRAM fitted with a power law. Experimental data taken from [28].
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Figure 11. Heavy-ion cross-section for 40 nm SRAM fitted with a power law. Experimental data taken from [29].
Figure 11. Heavy-ion cross-section for 40 nm SRAM fitted with a power law. Experimental data taken from [29].
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Figure 12. SEU cross-section calculation for 90 nm SRAM. Experimental data taken from [29].
Figure 12. SEU cross-section calculation for 90 nm SRAM. Experimental data taken from [29].
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Figure 13. SEU cross-section calculation for 65 nm SRAM. Experimental data taken from [28].
Figure 13. SEU cross-section calculation for 65 nm SRAM. Experimental data taken from [28].
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Figure 14. SEU cross-section calculation for 40 nm SRAM. Experimental data taken from [29].
Figure 14. SEU cross-section calculation for 40 nm SRAM. Experimental data taken from [29].
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Table 1. Reaction products as a function of incident energy for neutrons and protons in 28Si below 10 MeV.
Table 1. Reaction products as a function of incident energy for neutrons and protons in 28Si below 10 MeV.
Incident ParticleReaction ProductsReaction KindReaction Threshold (MeV)
Neutrons29Si + γcapture0
28Si + nelastic0
28Si + nnonelastic1.78
25Mg + α2.75
28Al + p4.00
27Al + d9.70
Protons29Si + γcapture0
28Si + pelastic0
25Al + αnonelastic7.99
Table 2. Typical critical charge (Qc), LETth, and Eth for different technologies [4].
Table 2. Typical critical charge (Qc), LETth, and Eth for different technologies [4].
Gate Length (nm)Qc (fC)LETth (MeV·cm2/mg)Eth (keV)
25081.99180
1302.51.3456
901.20.8727
650.80.8218
Table 3. Typical recoiling ranges of ions in silicon.
Table 3. Typical recoiling ranges of ions in silicon.
Proton energy (MeV)1510
Proton range in Si (μm)16200700
Maximum recoiling energy of Si (MeV)0.130.681.30
Maximum LET of the recoil in Si (MeV·cm2/mg)2.84.16.2
Maximum range of recoiling Si in Si (μm)0.182.703.50
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Marques, C.; Wrobel, F.; Aguiar, Y.; Michez, A.; Boch, J.; Saigné, F.; García Alía, R. A Methodology to Estimate Single-Event Effects Induced by Low-Energy Protons. Eng 2024, 5, 319-332. https://doi.org/10.3390/eng5010017

AMA Style

Marques C, Wrobel F, Aguiar Y, Michez A, Boch J, Saigné F, García Alía R. A Methodology to Estimate Single-Event Effects Induced by Low-Energy Protons. Eng. 2024; 5(1):319-332. https://doi.org/10.3390/eng5010017

Chicago/Turabian Style

Marques, Cleiton, Frédéric Wrobel, Ygor Aguiar, Alain Michez, Jérôme Boch, Frédéric Saigné, and Rubén García Alía. 2024. "A Methodology to Estimate Single-Event Effects Induced by Low-Energy Protons" Eng 5, no. 1: 319-332. https://doi.org/10.3390/eng5010017

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